this post was submitted on 29 Nov 2023
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Machine Learning
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Combine and make them one output
The outputs are distinct, so I can't combine them. One has to be as close to 0 as possible and the other has to be as high as possible, and I need to optimize the inputs to do that.
How about a custom loss function so you have something like loss=y1^2 -y2 for the two outputs? You can use PyTorch and optimize directly for the inputs.
output 1 - c*|output 2|